Wang Gaige, Guo Lihong, Duan Hong
Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China.
ScientificWorldJournal. 2013;2013:632437. doi: 10.1155/2013/632437. Epub 2013 Feb 20.
Target threat assessment is a key issue in the collaborative attack. To improve the accuracy and usefulness of target threat assessment in the aerial combat, we propose a variant of wavelet neural networks, MWFWNN network, to solve threat assessment. How to select the appropriate wavelet function is difficult when constructing wavelet neural network. This paper proposes a wavelet mother function selection algorithm with minimum mean squared error and then constructs MWFWNN network using the above algorithm. Firstly, it needs to establish wavelet function library; secondly, wavelet neural network is constructed with each wavelet mother function in the library and wavelet function parameters and the network weights are updated according to the relevant modifying formula. The constructed wavelet neural network is detected with training set, and then optimal wavelet function with minimum mean squared error is chosen to build MWFWNN network. Experimental results show that the mean squared error is 1.23 × 10(-3), which is better than WNN, BP, and PSO_SVM. Target threat assessment model based on the MWFWNN has a good predictive ability, so it can quickly and accurately complete target threat assessment.
目标威胁评估是协同攻击中的关键问题。为提高空战中目标威胁评估的准确性和实用性,我们提出一种小波神经网络的变体,即MWFWNN网络,用于解决威胁评估问题。在构建小波神经网络时,如何选择合适的小波函数是一个难题。本文提出一种具有最小均方误差的小波母函数选择算法,然后使用上述算法构建MWFWNN网络。首先,需要建立小波函数库;其次,用库中的每个小波母函数构建小波神经网络,并根据相关修正公式更新小波函数参数和网络权重。用训练集对构建好的小波神经网络进行检测,然后选择具有最小均方误差的最优小波函数来构建MWFWNN网络。实验结果表明,均方误差为1.23×10(-3),优于WNN、BP和PSO_SVM。基于MWFWNN的目标威胁评估模型具有良好的预测能力,因此能够快速、准确地完成目标威胁评估。